This paper studies the problem of emotion classification in microblog texts. Given a microblog text which consists of several sentences, we classify its emotion as anger, disgust, fear, happiness, like, sadness or surprise if available. Existing methods can be categorized as lexicon based methods or machine learning based methods. However, due to some intrinsic characteristics of the microblog texts, previous studies using these methods always get unsatisfactory results. This paper introduces a novel approach based on class sequential rules for emotion classification of microblog texts. The approach first obtains two potential emotion labels for each sentence in a microblog text by using an emotion lexicon and a machine learning approach re...
Sentiment analysis is a field of computational linguistics involving identification, extraction, and...
Report published in the Proceedings of the National Conference on "Education and Research in the Inf...
Sentiment analysis can go beyond the typical granularity of polarity that assumes each text to be po...
This paper studies the problem of emotion classification in microblog texts. Given a microblog text ...
The typical emotion classification approach adopts one-step single-label classification using intra-...
Microblog is an important platform for mining public opinion, and it is of great value to conduct em...
Abstract. We describe an experiment into detecting emotions in texts on the Chinese microblog servic...
Traditional text emotion analysis methods are primarily devoted to studying extended texts, such as ...
Sentiment analysis of micro-blog topic aims to explore people’s attitudes towards a topic or event o...
Abstract—A sentiment classification method for Chinese microblog is presented. For short sentence mi...
Textual emotion analysis aims to identify and recognize a set of predefined emotions from the text (...
Abstract. This paper studies the emotion classification task on microblogs. Given a message, we clas...
Automatic emotion detection in text is concerned with using natural language processing techniques t...
Emotion classification can benefit from a larger pool of training data but manually expanding the e...
Mining social emotions from text and more documents are assigned by social users with emotion labels...
Sentiment analysis is a field of computational linguistics involving identification, extraction, and...
Report published in the Proceedings of the National Conference on "Education and Research in the Inf...
Sentiment analysis can go beyond the typical granularity of polarity that assumes each text to be po...
This paper studies the problem of emotion classification in microblog texts. Given a microblog text ...
The typical emotion classification approach adopts one-step single-label classification using intra-...
Microblog is an important platform for mining public opinion, and it is of great value to conduct em...
Abstract. We describe an experiment into detecting emotions in texts on the Chinese microblog servic...
Traditional text emotion analysis methods are primarily devoted to studying extended texts, such as ...
Sentiment analysis of micro-blog topic aims to explore people’s attitudes towards a topic or event o...
Abstract—A sentiment classification method for Chinese microblog is presented. For short sentence mi...
Textual emotion analysis aims to identify and recognize a set of predefined emotions from the text (...
Abstract. This paper studies the emotion classification task on microblogs. Given a message, we clas...
Automatic emotion detection in text is concerned with using natural language processing techniques t...
Emotion classification can benefit from a larger pool of training data but manually expanding the e...
Mining social emotions from text and more documents are assigned by social users with emotion labels...
Sentiment analysis is a field of computational linguistics involving identification, extraction, and...
Report published in the Proceedings of the National Conference on "Education and Research in the Inf...
Sentiment analysis can go beyond the typical granularity of polarity that assumes each text to be po...